Hamilton P W, Bartels P H, Thompson D, Anderson N H, Montironi R, Sloan J M
Department of Pathology, Queen's University of Belfast, N. Ireland, U.K.
J Pathol. 1997 May;182(1):68-75. doi: 10.1002/(SICI)1096-9896(199705)182:1<68::AID-PATH811>3.0.CO;2-N.
Automation in histopathology is an attractive concept and recent advances in the application of computerized expert systems and machine vision have made automated image analysis of histological images possible. Systems capable of complete automation not only require the ability to segment tissue features and grade histological abnormalities, but, must also be capable of locating diagnostically useful areas from within complex histological scenes. This is the first stage of the diagnostic process. The object of this study was to develop criteria for the automatic identification of focal areas of colorectal dysplasia from a background of histologically normal tissue. Fields of view representing normal colorectal mucosa (n = 120) and dysplastic mucosa (n = 120) were digitally captured and subjected to image texture analysis. Two features were selected as being the most important in the discrimination of normal and adenomatous colorectal mucosa. The first was a feature of the co-occurrence matrix and the second was the number of low optical density pixels in the image. A linear classification rule defined using these two features was capable of correctly classifying 86 per cent of a series of training images into their correct groups. In addition, large histological scenes were digitally captured, split into their component images, analysed according to texture, and classified as normal or abnormal using the previously defined classification rule. Maps of the histological scenes were constructed and in most cases, dysplastic colorectal mucosa was correctly identified on the basis of image texture: 83 per cent of test images were correctly classified. This study demonstrates that abnormalities in low-power tissue morphology can be identified using quantitative image analysis. The identification of diagnostically useful fields advances the potential of automated systems in histopathology: these regions could than be scrutinized at high power using knowledge-guided image segmentation for disease grading. Systems of this kind have the potential to provide objectivity, unbiased sampling, and valuable diagnostic decision support.
组织病理学中的自动化是一个颇具吸引力的概念,并且计算机化专家系统和机器视觉应用方面的最新进展已使组织学图像的自动化图像分析成为可能。能够实现完全自动化的系统不仅需要具备分割组织特征和对组织学异常进行分级的能力,还必须能够从复杂的组织学场景中定位出具有诊断价值的区域。这是诊断过程的第一阶段。本研究的目的是制定从组织学正常组织背景中自动识别结直肠发育异常灶的标准。对代表正常结直肠黏膜(n = 120)和发育异常黏膜(n = 120)的视野进行数字采集,并进行图像纹理分析。选择了两个在区分正常和腺瘤性结直肠黏膜方面最为重要的特征。第一个是共生矩阵的一个特征,第二个是图像中低光密度像素的数量。使用这两个特征定义的线性分类规则能够将一系列训练图像中的86%正确分类到其正确的组中。此外,对大的组织学场景进行数字采集,将其分割成组成图像,根据纹理进行分析,并使用先前定义的分类规则将其分类为正常或异常。构建了组织学场景图,在大多数情况下,根据图像纹理正确识别出了发育异常的结直肠黏膜:83%的测试图像被正确分类。本研究表明,使用定量图像分析可以识别低倍组织形态学中的异常。识别具有诊断价值的区域提升了组织病理学中自动化系统的潜力:然后可以使用知识引导的图像分割在高倍镜下仔细检查这些区域以进行疾病分级。这类系统有可能提供客观性、无偏采样和有价值的诊断决策支持。